Dominik Janzing

63 publications

11 venues

H Index 28

Affiliation

Amazon Web Services, Germany
Max Planck Institute for Intelligent Systems, T bingen , Germany

Links

Name Venue Year citations
Toward Universal Laws of Outlier Propagation. UAI 2025 1
Toward Falsifying Causal Graphs Using a Permutation-Based Test. AAAI 2025 0
Self-Compatibility: Evaluating Causal Discovery without Ground Truth. AISTATS 2024 0
Quantifying intrinsic causal contributions via structure preserving interventions. AISTATS 2024 0
Causal vs. Anticausal merging of predictors. NIPS/NeurIPS 2024 0
DoWhy-GCM: An Extension of DoWhy for Causal Inference in Graphical Causal Models. JMLR 2024 0
Causal information splitting: Engineering proxy features for robustness to distribution shifts. UAI 2023 4
Assumption violations in causal discovery and the robustness of score matching. NIPS/NeurIPS 2023 28
On Measuring Causal Contributions via do-interventions. ICML 2022 35
Causal structure-based root cause analysis of outliers. ICML 2022 0
Causal Inference Through the Structural Causal Marginal Problem. ICML 2022 27
Score Matching Enables Causal Discovery of Nonlinear Additive Noise Models. ICML 2022 118
Testing Granger Non-Causality in Panels with Cross-Sectional Dependencies. AISTATS 2022 2
Causal forecasting: generalization bounds for autoregressive models. UAI 2022 0
Obtaining Causal Information by Merging Datasets with MAXENT. AISTATS 2022 0
You Mostly Walk Alone: Analyzing Feature Attribution in Trajectory Prediction. ICLR 2022 0
Why did the distribution change? AISTATS 2021 57
A Theory of Independent Mechanisms for Extrapolation in Generative Models. AAAI 2021 0
Necessary and sufficient conditions for causal feature selection in time series with latent common causes. ICML 2021 0
Feature relevance quantification in explainable AI: A causal problem. AISTATS 2020 0
Perceiving the arrow of time in autoregressive motion. NIPS/NeurIPS 2019 6
Causal Regularization. NIPS/NeurIPS 2019 54
Selecting causal brain features with a single conditional independence test per feature. NIPS/NeurIPS 2019 15
Cause-Effect Inference by Comparing Regression Errors. AISTATS 2018 89
Detecting non-causal artifacts in multivariate linear regression models. ICML 2018 36
Group invariance principles for causal generative models. AISTATS 2018 0
Avoiding Discrimination through Causal Reasoning. NIPS/NeurIPS 2017 626
Causal Consistency of Structural Equation Models. UAI 2017 155
Distinguishing Cause from Effect Using Observational Data: Methods and Benchmarks. JMLR 2016 0
Telling cause from effect in deterministic linear dynamical systems. ICML 2015 0
Removing systematic errors for exoplanet search via latent causes. ICML 2015 11
Inference of Cause and Effect with Unsupervised Inverse Regression. AISTATS 2015 79
Semi-supervised interpolation in an anticausal learning scenario. JMLR 2015 26
Causal Inference by Identification of Vector Autoregressive Processes with Hidden Components. ICML 2015 0
Estimating Causal Effects by Bounding Confounding. UAI 2014 9
Inferring latent structures via information inequalities. UAI 2014 44
Consistency of Causal Inference under the Additive Noise Model. ICML 2014 0
Causal discovery with continuous additive noise models. JMLR 2014 0
Identifying Finite Mixtures of Nonparametric Product Distributions and Causal Inference of Confounders. UAI 2013 16
Causal Inference on Time Series using Restricted Structural Equation Models. NIPS/NeurIPS 2013 187
From Ordinary Differential Equations to Structural Causal Models: the deterministic case. UAI 2013 114
On causal and anticausal learning. ICML 2012 660
Information-geometric approach to inferring causal directions. Artificial Intelligence 2012 308
On Causal Discovery with Cyclic Additive Noise Models. NIPS/NeurIPS 2011 99
Kernel-based Conditional Independence Test and Application in Causal Discovery. UAI 2011 693
Identifiability of Causal Graphs using Functional Models. UAI 2011 166
Detecting low-complexity unobserved causes. UAI 2011 24
Testing whether linear equations are causal: A free probability theory approach. UAI 2011 41
Causal Inference on Discrete Data Using Additive Noise Models. TPAMI 2011 0
Causal Markov Condition for Submodular Information Measures. COLT 2010 36
Identifying Cause and Effect on Discrete Data using Additive Noise Models. AISTATS 2010 88
Probabilistic latent variable models for distinguishing between cause and effect. NIPS/NeurIPS 2010 140
Inferring deterministic causal relations. UAI 2010 200
Invariant Gaussian Process Latent Variable Models and Application in Causal Discovery. UAI 2010 14
Telling cause from effect based on high-dimensional observations. ICML 2010 0
Identifying confounders using additive noise models. UAI 2009 70
Regression by dependence minimization and its application to causal inference in additive noise models. ICML 2009 163
Detecting the direction of causal time series. ICML 2009 43
Nonlinear causal discovery with additive noise models. NIPS/NeurIPS 2008 1178
A kernel-based causal learning algorithm. ICML 2007 80
Exploring the causal order of binary variables via exponential hierarchies of Markov kernels. ESANN 2007 6
Distinguishing between cause and effect via kernel-based complexity measures for conditional distributions. ESANN 2007 7
Learning causality by identifying common effects with kernel-based dependence measures. ESANN 2007 0
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